如何在vandas数据帧中将vincenty距离转换为float
作者:互联网
我有分析vincenty距离的问题,因为格式是对象并且在那里有km度量,我想进一步分析.我想将vincenty距离转换为浮动格式
这是数据
customer_id lat_free long_free lat_device long_device radius timestamp
7509 -6.283468 106.857636 -7.802388 110.368660 1264.000000 2017-12-14 21:18:40.327
7509 -6.283468 106.857636 -7.804296 110.367192 14.000000 2017-12-15 20:02:21.923
这是我的代码
from geopy.distance import vincenty
df['Vincenty_distance'] = df.apply(lambda x: vincenty((x['lat_free'], x['long_free']), (x['lat_device'], x['long_device'])), axis = 1)
这是结果
customer_id lat_free long_free lat_device long_device radius timestamp Vincenty_distance
7509 -6.283468 106.857636 -7.802388 110.368660 1264.000000 2017-12-14 21:18:40.327 422.7123873310482 km
7509 -6.283468 106.857636 -7.804296 110.367192 14.000000 2017-12-15 20:02:21.923 422.64674499172787 km
我需要将Vincenty_distance转换为float
解决方法:
最好的是添加.km:
df['Vincenty_distance'] = df.apply(lambda x: vincenty((x['lat_free'], x['long_free']), (x['lat_device'], x['long_device'])).km, axis = 1)
或者在处理后使用 – 转换为字符串,删除最后一个字母并转换为浮点数:
df['Vincenty_distance'] = df['Vincenty_distance'].astype(str).str[:-3].astype(float)
print (df)
customer_id lat_free long_free lat_device long_device radius \
0 7509 -6.283468 106.857636 -7.802388 110.368660 1264.0
1 7509 -6.283468 106.857636 -7.804296 110.367192 14.0
timestamp Vincenty_distance
0 2017-12-14 21:18:40.327 422.712361
1 2017-12-15 20:02:21.923 422.646709
print (df.dtypes)
customer_id int64
lat_free float64
long_free float64
lat_device float64
long_device float64
radius float64
timestamp object
Vincenty_distance float64
dtype: object
标签:geopy,python,pandas,geopandas 来源: https://codeday.me/bug/20190823/1697604.html